3D LIDAR SEGMENTATION BASED ON EUCLIDEAN CLUSTERING FOR EMBEDDED SYSTEM

Hai Minh Le, Toan Song Tran
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Abstract

This paper presents a method for 3D LiDAR segmentation based on Euclidean clustering specifically designed for embedded systems. LiDAR sensors are widely used for perception tasks in autonomous vehicles, robotics, and other applications, providing dense point cloud data of the environment. Segmentation of the point cloud into meaningful objects is essential for understanding the surroundings and making informed decisions. Euclidean clustering is an effective approach for grouping points based on spatial proximity, enabling object segmentation. However, implementing such algorithms on embedded systems poses challenges due to limited computational resources. In this work, we propose an optimized implementation of the Euclidean clustering algorithm tailored for embedded systems to achieve real-time performance on the embedded system. The proposed approach involves acquiring raw point cloud data from the LiDAR sensor and preprocessing it to reduce noise and size. Adaptive Euclidean clustering is then applied to group points into clusters based on their spatial proximity. Extracted features such as centroids and bounding boxes are utilized for object classification and segmentation. Post-processing steps refine the segmentation results, improving accuracy and removing spurious clusters
基于欧几里得聚类的嵌入式系统 3D 激光雷达分割
本文介绍了一种基于欧氏聚类的三维激光雷达分割方法,该方法专为嵌入式系统设计。激光雷达传感器广泛应用于自动驾驶汽车、机器人和其他应用中的感知任务,提供环境的密集点云数据。将点云分割成有意义的对象对于了解周围环境和做出明智决策至关重要。欧几里得聚类是一种有效的方法,可根据空间邻近性对点进行分组,从而实现物体分割。然而,由于计算资源有限,在嵌入式系统上实施此类算法面临挑战。在这项工作中,我们提出了一种为嵌入式系统量身定制的欧氏聚类算法优化实施方案,以实现嵌入式系统的实时性能。建议的方法包括从激光雷达传感器获取原始点云数据,并对其进行预处理,以减少噪声和大小。然后应用自适应欧几里得聚类,根据点的空间接近程度将其分组。提取的特征(如中心点和边界框)用于对象分类和分割。后处理步骤可完善分割结果,提高准确性并去除虚假聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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